Abstract The generation of molecules with artificial intelligence (AI) or, more specifically, machine learning (ML), is poised to revolutionize materials discovery. Potential applications range from development of potent drugs to efficient carbon capture and separation technologies. However, existing computational discovery frameworks for polymer membranes lack automated training data creation, generative design, and physical performance validation at meso-scale where complex properties of amorphous materials emerge. The methodological gaps are less relevant to the ML design of individual molecules such as the monomers which constitute the building blocks of polymers. Here, we report automated discovery of complex materials through inverse ...
Membrane-based materials are an important branch in the field of gas separation. There are increasin...
Over 1 trillion tons of CO2 have been emitted into the atmosphere since we passed the concentration ...
In the last half-century, considerable advances have been achieved in molecular simulation technique...
Artificial intelligence (AI) and Machine learning (ML), a subfield of AI, are important tools for th...
A simple approach was developed to computationally construct a polymer dataset by combining simplifi...
Deep learning is revolutionizing many areas of science and technology, particularly in natural langu...
Inverse design is an outstanding challenge in disordered systems with multiple length scales such as...
Accompanies the work "Machine learning enables interpretable discovery of innovative polymers for ga...
Organic materials find application in a range of areas, including optoelectronics, sensing, encapsul...
This paper deals with the use of Artificial Intelligence Methods (AI) in the design of new molecules...
A machine learning strategy is presented for the rapid discovery of new polymeric materials satisfyi...
Polymer-based membranes have the potential for use in energy efficient gas separations. The successf...
Designing polymeric membranes with high solute–solute selectivity and permeance is important but tec...
This work presents a proof-of-concept study in artificial-intelligence-assisted (AI-assisted) chemis...
Application of artificial intelligence and machine learning for polymer discovery offers an opportun...
Membrane-based materials are an important branch in the field of gas separation. There are increasin...
Over 1 trillion tons of CO2 have been emitted into the atmosphere since we passed the concentration ...
In the last half-century, considerable advances have been achieved in molecular simulation technique...
Artificial intelligence (AI) and Machine learning (ML), a subfield of AI, are important tools for th...
A simple approach was developed to computationally construct a polymer dataset by combining simplifi...
Deep learning is revolutionizing many areas of science and technology, particularly in natural langu...
Inverse design is an outstanding challenge in disordered systems with multiple length scales such as...
Accompanies the work "Machine learning enables interpretable discovery of innovative polymers for ga...
Organic materials find application in a range of areas, including optoelectronics, sensing, encapsul...
This paper deals with the use of Artificial Intelligence Methods (AI) in the design of new molecules...
A machine learning strategy is presented for the rapid discovery of new polymeric materials satisfyi...
Polymer-based membranes have the potential for use in energy efficient gas separations. The successf...
Designing polymeric membranes with high solute–solute selectivity and permeance is important but tec...
This work presents a proof-of-concept study in artificial-intelligence-assisted (AI-assisted) chemis...
Application of artificial intelligence and machine learning for polymer discovery offers an opportun...
Membrane-based materials are an important branch in the field of gas separation. There are increasin...
Over 1 trillion tons of CO2 have been emitted into the atmosphere since we passed the concentration ...
In the last half-century, considerable advances have been achieved in molecular simulation technique...